Accesso libero

Application of the Spherical Fuzzy Dematel Model for Assessing the Drone Apps Issues

INFORMAZIONI SU QUESTO ARTICOLO

Cita

P. A. Devi, C. I. Priyadarshini, C. Avvari. “Design of folded wing mechanism for Unmanned Aerial Vehicle (UAV),” Materialstoday. 2022. Proceedings in press, doi: 10.1016/j.matpr.2022.04.660. Search in Google Scholar

S. Bhusal, M. Karkee, U. Bhattarai, Y. Majeed, and Q. Zhang, K. “Automated execution of a pest bird deterrence system using a programmable unmanned aerial vehicle (UAV),” Computers and Electronics in Agriculture, 2022, 198, 106972. Search in Google Scholar

N. Eleftheroglou, S. Mansouri, T. Loutas, P. Karvelis, G. Georgoulas, G. Nikolakopoulos, D. Zarouchas. “Intelligent data-driven prognostic methodologies for the real-time remaining useful life until the end-of-discharge estimation of the Lithium-Polymer batteries of unmanned aerial vehicles with uncertainty quantification,” Applied Energy, 2019, 254, 113677. Search in Google Scholar

S. G. Bolanos, A. Q. Roman, and G. E. Alvarado. “Low-cost UAV applications in dynamic tropical volcanic landforms,” Journal of Volcanology and Geothermal Research, 2021, 410, 107143. Search in Google Scholar

G. Wang, Y. Han, X. Li, P. Chen, W. C. Hoffmann, X. Han, S. Chen, and Y. Lan. “Field evaluation of spray drift and environmental impact using an agricultural unmanned aerial vehicle (UAV) sprayer,” Science of the Total Environment, 2020, 737, 139793. Search in Google Scholar

R. Kumar, and A. K. Agrawal. “Drone GPS data analysis for flight path reconstruction: A study on DJI, Parrot & Yuneec make drones,” Forensic Science International: Digital Investigation, 2021, 38, 301182. Search in Google Scholar

E. Gallo, and A. Barrientos. “Reduction of GNSSDenied inertial navigation errors for fixed wing autonomous unmanned air vehicles,” Aerospace Science and Technology, 2021, 120, 107237. Search in Google Scholar

“Unmanned Aerial Vehicle (UAV) Market Size to Reach USD 72320 Million by 2028 at a CAGR of 14.4%” | Valuates Reports. Search in Google Scholar

https://www.prnewswire.com/in/news-releases/unmanned-aerial-vehicle-uav-market-sizeto-reach-usd-72320-million-by-2028-at-a-cagr-of-14-4-valuates-reports-870953616.html. Search in Google Scholar

K. Andersen, M. H. Frederiksen, M. P. Knudsen, and A. D. Krabbe. “The strategic responses of start-ups to regulatory constraints in the nascent drone market,” Research Policy, 49(10), 2020, 104055. Search in Google Scholar

M. Pandey, R. Litoriya, and P. Pandey. “Identifying causal relationships in mobile app issues: An interval type-2 fuzzy DEMATEL approach,” Wireless Personal Communications, 108(2), 2019, 683–710. Search in Google Scholar

M. Pandey, R. Litoriya, & P. Pandey. “Mobile APP development based on agility function,” Ingénierie des Systèmes d’Information, 23(6), 2018. Search in Google Scholar

S. McIlroy, N. Ali, H. Khalid, and A. E. Hassan. “Analyzing and automatically labelling the types of user issues that are raised in mobile app reviews,” Empirical Software Engineering, 21(3), 2016, 1067–1106. Search in Google Scholar

M. Pandey, R. Litoriya, and P. Pandey. “Perception-based classification of mobile apps: A critical review,” Smart computational strategies: Theoretical and practical aspects, 2019, 121–133. Search in Google Scholar

M. Pandey, R. Litoriya, and P. Pandey. “Application of fuzzy DEMATEL approach in analyzing mobile app issues,” Programming and Computer Software, 45(5), 2019, 268–287. Search in Google Scholar

M. Pandey, R. Litoriya, and P. Pandey. “Mobile applications in context of big data: A survey,” In 2016 Symposium on Colossal Data Analysis and Networking (CDAN) (pp. 1–5). 2016, March, IEEE. Search in Google Scholar

M. Pandey, R. Litoriya, and P. Pandey. “Empirical analysis of defects in handheld device applications,” In International Conference on Advances in Computing and Data Sciences (pp. 103–113). 2019, April. Springer, Singapore. Search in Google Scholar

M. Pandey, R. Litoriya, and P. Pandey. “Applicability of machine learning methods on mobile app effort estimation: Validation and performance evaluation,” International Journal of Software Engineering and Knowledge Engineering, 30(01), 2020, 23–41. Search in Google Scholar

M. Pandey, R. Litoriya, and P. Pandey. “Novel approach for mobile based app development incorporating MAAF,” Wireless Personal Communications, 107(4), 2019, 1687–1708. Search in Google Scholar

M. Pandey, R. Litoriya, and P. Pandey. “Validation of existing software effort estimation techniques in context with mobile software applications,” Wireless Personal Communications, 110(4), 2020, 1659–1677. Search in Google Scholar

M. Pandey, R. Litoriya, and P. Pandey, “Identifying causal relationships in mobile app issues: An interval type-2 fuzzy DEMATEL approach,” Wireless Personal Communications, 108(2), 2019, 683–710. Search in Google Scholar

M. Pandey, R. Litoriya, and P. Pandey. “Impact of various critical factors on Mobile App development based on reviews: An Investigative Study,” Technia, 9(1), 2016, 1097–1105. Search in Google Scholar

M. Pandey, R. Litoriya, and P. Pandey. “Mobile APP development based on agility function Mobile APP development based on agility function.” Search in Google Scholar

M. Harman, Y. Jia, Y. Zhang. “App store mining and analysis: Msr for app stores,” In: Proceedings of the 9th IEEE working conference on mining software repositories, MSR ’12. IEEE Press, 2012, pp. 108–111. Search in Google Scholar

A. Finkelstein, M. Harman, Y. Jia, W. Martin, F. Sarro, Y. Zhang. “Investigating the relationship between price, rating, and popularity in the Blackberry world app store,” Inf Softw Technol 87, 2017, 119–139. Search in Google Scholar

G. Lee, and R. Santanam. “Determinants of Mobile Apps’ Success: Evidence from the App Store Market,” Journal of Management Information Systems 31(2), 2017, 133–170. Search in Google Scholar

J. Nikolas, A. S. Fogarty, K. Boydell, and Christensen. “The Reviews Are in: A Qualitative Content Analysis of Consumer Perspectives on Apps for Bipolar Disorder,” In: Proceedings of the 10th IEEE consumer communications and networking conference, CCNC ’13, (2017), pp. 149–157. Search in Google Scholar

L. Hoon, R. Vasa, J. G. Schneider, K. Mouzakis. “A preliminary analysis of vocabulary in mobile app user reviews,” In: Proceedings of the 24th Australian computer-human interaction conference, OzCHI ’12. ACM, 2012, pp. 245–248. Search in Google Scholar

R. Vasa, L. Hoon, K. Mouzakis, A. Noguchi. “A preliminary analysis of mobile app user reviews,” In: Proceedings of the 24th Australian computerhuman interaction conference, OzCHI ’12. ACM, 2012, pp. 241–244. Search in Google Scholar

B. Fu, J. Lin, L. Li, C. Faloutsos, J. Hong, N. Sadeh. “Why people hate your app: making sense of user feedback in a mobile app store,” In: Proceedings of the 19th ACM SIGKDD international conference on knowledge discovery and data mining, KDD ’13. ACM, 2013, pp. 1276–1284. Search in Google Scholar

P. M. Vu, T. T. Nguyen, and H. V. Pham, H. V. “Mining User Opinions in Mobile App Reviews: A Keyword-based Approach,” 2013, https://arxiv.org/pdf/1505.04657.pdf. Search in Google Scholar

L. Zhang, X. Y. Huang, and Y. K. Hu, “CSLabel: An Approach for Labelling Mobile App Reviews,” 32(6), 2017, 1076–1089. Search in Google Scholar

K. Phetrungnapha, T. Senivongse. “Classification of Mobile Application User Reviews for Generating Tickets on Issue Tracking System,” 2019, 12th International Conference on Information & Communication Technology and System (ICTS). Search in Google Scholar

L. Padgaonkar, S. Jain, S. Ajgaonkar, R. Londhe, and B. S. Balbudhe. “Mobile Application Review Classification Using Machine Learning Approach,” International Journal of Innovative Research in Science, Engineering and Technology, 8(5), 2019, 5806–5809. Search in Google Scholar

A. P. Widyassari, S. Rustad, G. F. Shidik, E. Noersasongko, A. Syukur, A. Affandy, D. De Setiadi. “Review of automatic text summarization techniques & methods,” 34(4), 2022, 1029–1046. Search in Google Scholar

K. Kalaichelavan, H. Malik, N.. Husnu, and S. Shreenath. “What Do People Complain About Drone Apps? A Large-Scale Empirical Study of Google Play Store Reviews,” Procedia Computer Science, 170, 2020, 547–554. Search in Google Scholar

T. Zhang, J. Chen, X. Zhan, X. Luo, D. Lo, and H. Jiang. Where2Change: Change Request Localization for App Reviews, IEEE Transactions on Software Engineering, 47(11), 2590–2616. Search in Google Scholar

H. Khalid, E. Shihab, M. Nagappan, and A. E. Hassan, “What Do Mobile App Users Complain About?”, IEEE Software 32(3), 2021, 1–1. Search in Google Scholar

R. Vasa, L. Hoon, K. Mouzakis, and A. Noguchi. “A Preliminary Analysis of Mobile App User Reviews,” Proceedings of the 24th Australian Computer-Human Interaction Conference, 2012, doi: 10.1145/2414536.2414577. Search in Google Scholar

C. Iacob, and R. Harrison. Retrieving and analyzing mobile apps feature requests from online reviews, 10th Working Conference on Mining Software Repositories (MSR), 2013, doi: 10.1109/MSR.2013.6624001. Search in Google Scholar

F. Paloma, M. L. V´asquez, G. Bavota, R. Oliveto, M. D. Penta, D. Poshyvanyk, and A. D. Lucia. “Crowdsourcing User Reviews to Support the Evolution of Mobile Apps,” 2017, 137, 143–162. Search in Google Scholar

D. Ferreira, J. Goncalves, V. Kostakos, and A. K. Dey. “Contextual Experience Sampling of Mobile Application Micro-Usage,” MobileHCI 2014, Sept. 23–26, 2014, Toronto, ON, CA. Search in Google Scholar

E. Falatoonitoosi, S. Ahmaed, and S. Sorooshiyan. “Expanded DEMATEL for determining cause and effect group in bidirectional relations,” The Scientific World Journal, 2014, 1–8. Search in Google Scholar

G. Shen, S. G. Sun, Y. Zhang, Z. Wang, B. Chen, C. Ma. “System failure analysis based on DEMATEL-ISM and FMECA,” Journal of Central South University, 21, 2014, 4518–4525. Search in Google Scholar

W. Zhang, Y, Deng. “Combining conflicting evidence using the DEMATEL method,” Soft Computing, 23, 2019, 8207–8216. Search in Google Scholar

W. Zhang, Y. Deng. “Combining conflicting evidence using the DEMATEL method,” Soft Computing, 23, 2019, 8207–8216. Search in Google Scholar

W. Liu. “Analyzing the degree of conflict among belief functions,” Artif Intell 170(11), 2006, 909–924. Search in Google Scholar

M. L. Tseng. “A causal and effect decision making model of service quality expectation using greyfuzzy dematel approach,” Expert Syst Appl 36(4), 2009, 7738–7748. Search in Google Scholar

H. S. Lee, G. H. Tzeng, W. Yeih, Y. J. Wang, and S. C. Yang. “Revised DEMATEL: Resolving the Infeasibility of DEMATEL,” 37(11), 2013, 6746–6757. Search in Google Scholar

J. I. Shieh, H. H. Wu. “A DEMATEL method in identifying key success factors of hospital service quality,” Knowledge-Based Systems, 23(3), 2013, 277-282. Search in Google Scholar

M. Yazdi, F. Khan, R. Abbasi, and R. Rusli. “Improved DEMATEL methodology for effective safety management decision-making,” Safety Science, 127, 2020, 1047–125. Search in Google Scholar

W. C. Wang, Y. H. Lin, C. L. Lin, C. H. Chung, M. T. Lee. DEMATEL-based model to improve the performance in a matrix organization, Expert Systems with Applications, 39(5), 2012, 4978–4986. Search in Google Scholar

Y. Li,Y. Hu, X. Zhang, Y. Deng, S. Mahadevan, “An evidential dematel method to identify critical success factors in emergency management,” Appl Soft Comput J 22, 2014, 504–510. Search in Google Scholar

Y. Lin, C. Wang, C. Ma, Z. Dou, X. Ma. “A new combination method for multisensor conflict information,” J Supercomput 72(7), 2016, 1–17. Search in Google Scholar

J. Hu, and G. N. Zhu. “A Rough-Z-numberbased DEMATEL to evaluate the co-creative sustainable value propositions for smart product-service systems,” 38(8), 2021, 3645–3679. Search in Google Scholar

P. Zdzislaw. “Rough sets, rough relations and rough functions,” Fundamental Informaticae, 27(2–3), 1996, 103–108. Search in Google Scholar

J. Wen, X. Chunhe, L. Yu, and T. Yongchuan. “Ranking Z-numbers with an improved ranking method for generalized fuzzy numbers,” Journal of Intelligent & Fuzzy Systems, 32(3), 2017, 1931–1943. Search in Google Scholar

B. Kang, D. Wei, Y. Li, and Y. Deng. “A Method of Converting Z-number to Classical Fuzzy Number,” Journal of Information & Computational Science, 9(3), 2012, 703–709. Search in Google Scholar

M. Tarokh, M. Cross, and M. Lee. “Erratum to: Fuzzy logic decision making for multi-robot security systems,” Artificial Intelligence Review, 34, 2010, 289. Search in Google Scholar

A. Shahzaib, A. Saleem, M. Tahir, G. Fazal, M. Tariq. “Spherical fuzzy sets and their applications in multi-attribute decision making problems,” Journal of Intelligent & Fuzzy Systems, 36(3), 2019, 2829–2844. Search in Google Scholar

S. L. Si, X. Y. You, H. C. Liu. “DEMATEL Technique: A Systematic Review of the State-of-the-Art Literature on Methodologies and Applications,” Mathematical problems in Engineering, 2018, doi. 10.1155/2018/3696457. Search in Google Scholar

B. Chang, C. Chang, C. H. Wu. “Fuzzy DEMATEL method for developing supplier selection criteria,” Expert Systems with Applications, 38(3), 2011, 1850–1858. Search in Google Scholar

S. Yuksel, H. Dincer, S. Eti, and Z. Adali. “Strategy improvements to minimize the drawbacks of geothermal investments by using spherical fuzzy modelling,” International Journal of Energy Research, 2022, doi: 10.1002/er.7880. Search in Google Scholar

S. Gul. “Extending ARAS with Integration of Objective Attribute Weighting under Spherical Fuzzy Environment,” International Journal of Information Technology & Decision Making, 20(3), 2021, 1011–1036. Search in Google Scholar

A. Shahzaib, A. Saleem, A. Muhammad, Q. Muhammad, K. Marwan. “Spherical fuzzy sets and its representation of spherical fuzzy t-norms and t-conorms,” Journal of Intelligent & Fuzzy Systems, 36(6), 2019, 6089–6102. Search in Google Scholar

K. Gundogdu, Fatma, and K. Cengiz. “A novel VIKOR method using spherical fuzzy sets and its application to warehouse site selection,” Journal of Intelligent & Fuzzy Systems, 37(1), 2019, 1197–1211. Search in Google Scholar